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Detection and Parameter Estimation of R Peaks in ECG Signal Using Optimization Algorithm

机译:优化算法的ECG信号中R峰的检测和参数估计

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Accurate R-peak detection is very important for arrhythmia diagnosis. Our previous effective R detection algorithm consisted of three strategies: band-pass filter, adaptive definition of interesting block and dynamic threshold. Then, it adopted the optimization algorithm to replace the knowledge-based theory and found out the suitable parameters (F1, F2, N, W1, W2, β and μ) in R detection algorithm quickly and obtained the high performance of detecting R peaks (99.77%). In order to improve the performance of the previous study, this study proposes to add the median filter in the algorithm to correct baseline wander components of electrocardiography (ECG) signals. It is necessary to defined two parameters (T1 and T2) in median filter. Therefore, this study adopts particle swarm optimization (PSO) to find the suitable parameters (T1, T2, F1, F2, N, W1, W2, β and μ) in the proposed method. The proposed method is applied to MIT-BIH arrhythmia database. The results show that PSO can find out the suitable parameters in R detection algorithm and have a higher accuracy (99.95%) than one of the previous study.
机译:精确的R-峰值检测是心律失常的诊断非常重要。我们以前的有效ř检测算法包括三个策略:带通滤波器,有趣块和动态阈值的自适应定义。然后,它通过优化算法来代替基于知识的理论和发现了合适的参数(F1,F2,N,W1,W2,β和μ)中的R检测算法快速,得到的检测R峰值的高性能( 99.77%)。为了改善以往的研究中的表现,这项研究建议增加值滤波的算法(ECG)信号的心电图正确的基线漂移分量。有必要定义了两个参数(T1和T2)中值滤波器。因此,本研究采用粒子群优化(PSO)找到在所提出的方法中的合适的参数(T1,T2,F1,F2,N,W1,W2,β和μ)。所提出的方法被施加到MIT-BIH心律失常数据库。结果表明,PSO可以找出R中检测算法的适当的参数,并且具有比以往的研究中的一个较高的精度(99.95%)。

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